首页> 外文会议>European Safety and Reliability Conference(ESREL 2005); 20050627-30; Tri City(Gdynia-Sopot-Gdansk)(PL) >Determination of point of maximum likelihood in failure domain using genetic algorithms
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Determination of point of maximum likelihood in failure domain using genetic algorithms

机译:用遗传算法确定失效域中最大似然点

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摘要

The point of maximum likelihood in a failure domain yields the highest value of the probability density function in the failure domain. The maximum-likelihood point thus represents the worst combination of random variables that contribute in the failure event. In this work Genetic Algorithms (GAs) with an adaptive penalty scheme have been proposed as a tool for the determination of the maximum likelihood point. The utilization of only numerical values in the GAs operation makes the algorithms applicable to cases of non-linear and implicit single and multiple limit state function(s). The algorithmic simplicity readily extends its application to higher dimensional problems. When combined with Monte Carlo Simulation, the proposed methodology will reduce the computational complexity and at the same time will enhance the possibility in rare-event analysis under limited computational resources. Since there is no approximation done in the procedure, the solution obtained is considered accurate. Consequently, GAs can be used as a tool for increasing the computational efficiency in the element and system reliability analyses.
机译:失效域中的最大似然点在失效域中产生概率密度函数的最大值。因此,最大似然点表示导致故障事件的随机变量的最差组合。在这项工作中,已经提出了带有自适应惩罚方案的遗传算法(GA)作为确定最大似然点的工具。 GA运算中仅使用数值,使得该算法适用于非线性和隐式单极限和多极限状态函数的情况。算法的简单性很容易将其应用扩展到更高维度的问题。当与蒙特卡洛模拟相结合时,所提出的方法将减少计算复杂性,同时将增加在有限的计算资源下进行稀有事件分析的可能性。由于在此过程中未进行任何近似处理,因此得出的解被认为是准确的。因此,遗传算法可以用作提高元素和系统可靠性分析的计算效率的工具。

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